Title of article :
A fast-running core prediction model based on neural networks for load-following operations in a soluble boron-free reactor
Author/Authors :
Jin-wook Jang، نويسنده , , Seung-Hwan Seong، نويسنده , , Un-Chul Lee، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Abstract :
A fast prediction model for load-following operations in a soluble boron-free reactor has been proposed, which can predict the core status when three or more control rod groups are moved at a time. This prediction model consists of two multilayer feedforward neural network models to retrieve the axial offset and the reactivity, and compensation models to compensate for the reactivity and axial offset arising from the xenon transient. The neural network training data were generated by taking various overlaps among the control rod groups into consideration for training the neural network models, and the accuracy of the constructed neural network models was verified. Validation results of predicting load following operations for a soluble boron-free reactor show that this model has a good capability to predict the positions of the control rods for sustaining the criticality of a core during load-following operations to ensure that the tolerable axial offset band is not exceeded and it can provide enough corresponding time for the operators to take the necessary actions to prevent a deviation from the tolerable operating band.
Journal title :
Annals of Nuclear Energy
Journal title :
Annals of Nuclear Energy